eprintid: 17426 rev_number: 2 eprint_status: archive userid: 1 dir: disk0/00/01/74/26 datestamp: 2023-12-19 03:23:49 lastmod: 2023-12-19 03:23:49 status_changed: 2023-12-19 03:08:02 type: conference_item metadata_visibility: show creators_name: Ali, Y.H. creators_name: H. Ahmed, F.Y. creators_name: Abdelrhman, A.M. creators_name: Ali, S.M. creators_name: Borhana, A.A. creators_name: Ishak Raja Hamzah, R. title: Novel spiking neural network model for gear fault diagnosis ispublished: pub keywords: Acoustic emission testing; Computer aided diagnosis; Failure analysis; Fault detection; Feature extraction; Gear teeth; Graphical user interfaces; Losses; Neural networks; Spur gears, Acoustic emission signal; Acoustic-emissions; Gear fault diagnosis; Gear system; Human lives; Machine systems; Neural network model; Neural-networks; Performance; Spiking neural network and acoustic emission, Condition monitoring note: cited By 2; Conference of 2nd International Conference on Emerging Smart Technologies and Applications, eSmarTA 2022 ; Conference Date: 25 October 2022 Through 26 October 2022; Conference Code:184190 abstract: Gearbox is an important component in machine system. Hence, it is important to predict and maintain the performance of the gear system, since any unpredictable failure in this system can seriously threaten human lives and cause significant economic losses. Therefore, it is essential to inspect the gear teeth at regular intervals for identifying the crack propagation or other damages affecting the system in advance at the early stage. In this study, a new method have been proposed by the researchers which utilized artificial intelligence processes for routine maintenance. A new 3rd generation Artificial Neural Network (ANN) has been used for diagnosing and classifying the faults occurring in the spur gear systems based on the Acoustic Emission (AE) signals. Hence, they developed a test rig with various seeded gear faults, which later processed the acquired AE signals by utilizing the pre-processing technique based on the Slantlet Transform (SLT), feature extraction and Information Gain (IG) processes. These processes were used before the use of a feature selection technique which was used for developing the Spiking Neural Network (SNN) diagnosis and classification model. These processes were run using a Graphical User Interface (GUI) for fault diagnosis and classification of spur gears. Results of the study showed that this process could improve the accuracy of the diagnosis system depending on the features and information which was fed to the model. In this study, the researchers investigated the probability of increasing the accuracy better for the spur gear fault diagnosis with the help of the Spiking Neural Network (SNN) process. They achieved an accuracy of �95 when using SNN. Finally, it was concluded that the proposed technique was as an effective tool for diagnosing and classifying the faults identified in the spur gears. © 2022 IEEE. date: 2022 publisher: Institute of Electrical and Electronics Engineers Inc. official_url: https://www.scopus.com/inward/record.uri?eid=2-s2.0-85142457715&doi=10.1109%2feSmarTA56775.2022.9935414&partnerID=40&md5=25c922d7a1ab06c0b28f1de0d8f50fa7 id_number: 10.1109/eSmarTA56775.2022.9935414 full_text_status: none publication: 2022 2nd International Conference on Emerging Smart Technologies and Applications, eSmarTA 2022 refereed: TRUE isbn: 9781665461818 citation: Ali, Y.H. and H. Ahmed, F.Y. and Abdelrhman, A.M. and Ali, S.M. and Borhana, A.A. and Ishak Raja Hamzah, R. (2022) Novel spiking neural network model for gear fault diagnosis. In: UNSPECIFIED.